System for extraction of reverberant content of an audio signal

ABSTRACT

A reverberant characteristic of an acoustic space is superimposed on an audio signal that is received by an apparatus. The apparatus decomposes the audio signal into an estimated original dry signal component and an estimated reverberant characteristic of the acoustic space. Estimation of the original dry signal component and the reverberant characteristic of the acoustic space is based on determination of an estimated impulse response of the acoustic space from the received audio signal. Once the audio signal is decomposed, the estimated original dry signal component and the estimated reverberant characteristic of the acoustic space may be independently modified by the apparatus. The modified or unmodified estimated original dry signal component and estimated reverberant characteristic of the acoustic space may be combined by the apparatus to produce one or more adjusted frequency spectra.

This application is a continuation application of, and claims priority under 35 U.S.C. §120 to, U.S. patent application Ser. No. 11/533,707, filed Sep. 20, 2006, entitled APPARATUS FOR EXTRACTING AND CHANGING THE REVEBERANT CONTENT OF AN INPUT SIGNAL, the entire contents of which are incorporated by reference.

FIELD OF THE INVENTION

This invention relates to decomposition and alteration of reverberant and nonreverberant components of an input signal and more particularly to reducing or increasing the perceptibility of a component of an input signal. It has particular application to reducing or increasing reverberation in an audio signal.

There are numerous cases where the reverberation found in a signal is not appropriate for its final use and therefore we would like to have a means of altering the reverberation. Furthermore we would like to be able to modify this reverberation without having to directly measure the acoustic space in which it was recorded.

BACKGROUND OF THE INVENTION

Almost all audio signals consist of a combination of an original dry signal and reverberation. The reverberation results from the dry signal being passed through a reverberant system. For example, consider a singer performing in a concert hall. In this example the singer's voice is the dry signal and the concert hall is the reverberant system. If we place a microphone at some location in the concert hall to record the resulting sound, we will have the dry voice signal with the reverberant characteristics of the concert hall superimposed upon it. That is, the microphone captures a mixture of the direct sound component due to the singer, and the reverberant component due to the sound passing through the concert hall.

Once the original dry signal has the reverberant characteristics of an acoustic space superimposed upon it, it is extremely difficult to recover the original dry signal (or the direct signal component). Similarly, it is extremely difficult to alter the characteristics or level of the reverberant component. The difficulty is due in part to the fact the reverberation is dependent on the original dry signal. That is the reverberation is created from the original dry signal.

Moreover, we do not typically have access to any relevant information regarding the reverberant system. Using the example of the singer in a concert hall, the microphone does not record the acoustic details of the concert hall directly. Rather it records the sound of the singer's voice with the acoustic characteristics of the concert hall superimposed upon it.

In some applications such as musical recordings a certain amount of reverberation is highly desirable since it can provide a subjectively pleasing extension of each note as well as a sense of depth and envelopment. Of course, some acoustic spaces (e.g. concert halls) are more subjectively pleasing than others. However, one does not typically have access to the most subjectively pleasing acoustic spaces and so the reverberant component of the recording may not be as good as one would like. That is the reverberation may not be entirely appropriate for that recording. At present, there is not much that can be done to alter the reverberant component of the recording in this case. If the recording lacks reverberant energy, then one can add more reverberant energy by processing the recording through an artificial reverberation device. However, the reverberation produced by these devices does not tend to sound natural and is unlikely to complement the reverberation that is already present in the recording. Conversely, if the recording has too much reverberation, then there is not much that can be done presently to reduce the level of the reverberant component. If the recording has the right amount of reverberation, but not the right characteristics, then there is not much that can be done presently to alter the characteristics of the reverberation. In each of these cases it would be highly beneficial to be able to modify the direct sound component as well as the level and characteristics of the reverberant energy in order to obtain the appropriate reverberant characteristics.

In other applications even a modest amount of reverberation is not appropriate since it degrades the clarity and intelligibility of the signal. For example, in applications such as teleconferencing where a hands-free telephone is often used, the reverberation of the office or conference room can have the undesirable effect of making the speech signal sound “hollow”. This is often referred to as the rain barrel effect. In other related applications such as security, surveillance and forensics, the reverberation is highly undesirable since it can reduce the intelligibility of speech signals. However in such situations it is typically impossible to have any control over the reverberant characteristics of the acoustic space. In speech recognition systems the reverberation reduces the system's ability to correctly identify words and may thus reduce the recognition rate. If the recognition rate becomes too low then the speech recognition system may be rendered unusable. Reverberation can cause unique difficulties for hearing impaired people since the undesirable effects of the reverberation are often compounded by their hearing impairment. The negative effects of reverberation on speech intelligibility are often more severe for people with hearing impairments. When a hearing aid device amplifies an acoustic signal to make it more audible, it amplifies both the direct sound component and the reverberant component. Therefore, amplifying the signal does not help to overcome the negative effects of the reverberation. In each of these applications it would be highly beneficial to be able to reduce the level of the reverberant component so that it is at an appropriate level with respect to the direct sound component. One common approach to try to reduce the amount of reverberation in an audio signal is to use a directional microphone or a microphone array. The directional microphone and microphone array accept sounds arriving from certain directions and reject sounds coming from other directions. Therefore, if the microphone is placed appropriately then it will accept the desired dry signal while rejecting some portion of the reverberation.

Successful use of a directional microphone or microphone array requires that one knows where the desired signal is located. If the location is not known, or if it is changing over time, then this approach may not work satisfactorily since the desired signal may be rejected. Also, this approach may not be appropriate in certain applications due to the physical size of the microphone array, the increase in the amount of hardware resources required (e.g. microphones, amplifiers, etc), and the resultant increase in cost. Instead, it would be highly beneficial to be able to blindly reduce the level of the reverberant component to an appropriate level using a single non-directional microphone, without any knowledge of the acoustic space, and without any knowledge of the location of the source.

In film and television productions it is important for the sounds that we hear (e.g. dialog and sound effects) to have reverberant characteristics that are appropriate for the image that we see on the screen. For example if the image indicates that the scene is taking place in a small room, then the sound should have the reverberant characteristics of a small room even though it may actually have been recorded on a large sound stage. The term “room tone” is often used in film and television productions to describe the acoustic characteristics of the acoustic space. In general the sounds in film and television productions are often recorded in very different locations. For example parts of the dialog may be recorded at the time of filming, whereas other parts of the dialog may be recorded later in a recording or “dubbing” studio. Here the actors recite their lines while they watch a video of their performance. This process is known as automatic dialog replacement (ADR) and is an extremely common practice. In order for the various parts of the dialog to sound natural and realistic, it is necessary to match the room tone (reverberant characteristics) of the different recordings so that they sound as though they were all recorded in the same acoustic space. Moreover, one usually wants to make the recordings sound like they were recorded in a very specific acoustic space, having a very specific room tone.

In the ADR example the recordings are often very dry since the recording or dubbing studio is usually a carefully controlled acoustic space. That is there is typically very little reverberation in the recordings. In this case one may wish to impose the reverberant characteristics of a specific room onto the recordings. This may be quite difficult if the acoustic characteristics of the room are not directly available. However, other recordings that were recorded in that room may be available. In this case it would be highly useful to be able to extract the acoustic characteristics of an acoustic space from a recording. It would further be useful to be able to impose the reverberant characteristics of the appropriate acoustic space onto a recording.

In situations where different parts of the dialog have been recorded in different acoustic spaces that each have a significant amount of reverberation, then the task is to somehow match the reverberant characteristics of the different recordings. To do this one must first remove the reverberant characteristics of the room in which the recording was done before applying the reverberant characteristics of the appropriate acoustic space. As indicated above, this is a difficult task that has not been satisfactorily resolved to date. In this situation it would be very useful to be able to remove the acoustic characteristics of a recording and then apply the acoustic characteristics of an appropriate acoustic space.

In one class of situations the reverberation found in an audio signal is inappropriate in that it limits one's ability to process the signal in some way. For example in an audio data reduction system the goal is to compress the signal so that a smaller amount of data is used to store or transmit a signal. Such systems use an encoder to compress the signal as well as a decoder to later recover the signal. These audio data reduction systems can be “lossless” in which case no information is lost as a result of the compression process, and so the original signal is perfectly recovered at the decoder. Other versions are “lossy” and so the signal recovered at the decoder is not identical to the original input signal. Audio data reduction systems rely on there being a high degree of redundancy in the audio signal. That is they operate best on audio signals that are “predictable”. However, reverberation in an audio signal reduces its predictability. There are currently no means of overcoming the effects of reverberation in order to improve the performance of an audio data reduction system. It would be highly desirable to be able to decompose a signal into its direct sound component and reverberant component prior to compressing it at the encoder, and then retrieve the reverberant signal after decoding the compressed signal.

Another example where reverberation limits one's ability to process a signal is audio watermarking. In audio watermarking the goal is to hide information inside an audio signal. This hidden information may be used for such things as copyright protection of a song. Audio watermarking systems operate by making small modifications to the audio signal. These modifications must be inaudible if the watermark is to be successful. Here, one would like to make a modification at a very specific point in time in the song. However this modification may become audible if the direct sound component and the reverberant component no longer match each other as a result of the modification. It would be highly desirable to be able to remove the reverberant component of an audio signal, insert an audio watermark, and then add the reverberant component back to the signal.

In another class of situations the reverberation found in a signal becomes inappropriate as a result of some processing. For example it is common to process a signal in order to remove background noise or to alter its dynamic range. This processing often alters the relation between the direct sound component and the reverberant component in the recording such that it is no longer appropriate. There are currently no means of correcting the reverberant component after this processing.

It is often not convenient or impossible to measure the acoustic characteristics of an acoustic space. Using our earlier example, while we can have easy access to a recording of a singer in a concert hall, we very rarely have access to concert hall itself. And, even if we did have access to the concert hall, we wouldn't likely be able to reproduce the acoustic conditions at the time of the recording (e.g. location of the singer and the microphone, presence of an audience, etc.). Therefore we would like to be able to extract a description of the reverberant system from a recording (or real-time signal) that was made within that reverberant system. Most importantly we would like to be able to extract a description of the perceptually relevant aspects of the reverberant system. To date, there is no method that adequately satisfies this need. This description of the reverberant system may be used to analyze the reverberant system, as part of a system for modifying or reducing the reverberant characteristics in a recording, or as part of a system for imposing reverberant characteristics onto a recording.

The earliest audio recordings (film, music, television, etc.) were monophonic. That is they were recorded onto only one channel. Stereo audio recordings are typically more pleasing since they are better at reproducing the spatial aspects of the reverberant characteristics of the acoustic space. Numerous processes have been developed to try to convert monophonic recordings to a stereophonic format. These techniques are limited by the fact that they process both the direct sound component as well as the reverberant component. These techniques could be improved dramatically if they could process the direct sound component and reverberant component separately. At present, there is no satisfactory way to decompose the signal into a direct sound component and reverberant component so that they may be processed separately.

Multichannel surround systems are becoming increasingly popular. Whereas a stereo system has two channels (and thus two loudspeakers) a multichannel surround system has multiple channels. Typical multichannel surround systems use five channels and hence five loudspeakers. At present the number of multichannel audio recordings available is quite limited. Conversely, there are a very large number of mono and stereo recordings available. It would be highly desirable to be able to take a mono or stereo audio signal and produce a multichannel audio signal from it. Current methods for doing this use an approach called “matrix decoding”. These methods will take a stereo recording and place different parts of the recording in each of the channels of the multichannel system. In the case of music recordings, some of the instruments will appear to be located behind the listener. This is not a desirable result in some situations. For example when playing an orchestral recording one does not typically want some of the instruments to appear to be located behind the listener. Rather, one typically wants the instruments to appear to be located in front of the listener, with the concert hall reverberation appearing to arrive from all around the listener.

One way to approach this problem is to send the original stereo signal to the front loudspeakers while also processing the stereo signal through an artificial reverberation device. The outputs of the artificial reverberation device are intended to provide a simulation of the concert hall reverberation, and they would be sent to the rear (surround) loudspeakers. This approach is not satisfactory for several reasons. First, the approach adds additional reverberation on top of the reverberation already present in the stereo signal. Therefore, this approach can make the overall amount of reverberation inappropriate for that particular recording. Moreover, the reverberation added by the artificial reverberation device is not likely to match the characteristics of the reverberation in the stereo recording. This will make the resultant multichannel signal sound unnatural. A better approach would be to decompose the stereo signal into its direct sound component and its reverberant component.

With the original signal decomposed into direct and reverberant components, one could choose to create multichannel audio signals by processing the direct sound component through a multichannel artificial reverberation device. This method would avoid the problem of adding additional reverberation since the reverberant component of the signal has been removed. This method would also avoid the problem of a mismatch between the artificial reverberation and the reverberation in the original recording.

Alternatively, with the original signal decomposed into direct and reverberant components, one could choose to create multichannel audio signals by sending the direct component to the front loudspeakers. This would preserve the frontal placement of the instruments in the reproduced sound field. The reverberant component of the original signal could either be sent to the rear loudspeakers, or it could decomposed into sub-components and distributed across all of the loudspeakers in an appropriate manner. This approach would have the significant advantage of creating a multichannel signal entirely from the components of the original recording, thus creating a more natural sounding result. There are no methods currently available that allow a signal to be decomposed into direct and reverberant components so that multichannel signals can be generated in this manner.

In general, if one had a recording of a sound in a reverberant system and one could somehow directly measure the acoustic characteristics of that reverberant system, then it would be possible to mathematically invert the reverberant system and completely recover the original dry sound. This process is known as inverse filtering. However inverse filtering cannot be done without precise measurements of the exact acoustic characteristics of the reverberant system. Moreover, the resulting inverse filter is specific to that one set of acoustic characteristics. It is not possible to use inverse filtering to recover the original dry signal from a recording in a given reverberant system using the acoustic characteristics measured from a different reverberant system. For example, an inverse filter derived for one location in a room is not valid for any other location in the same room. Other problems with inverse filters are that they can be computationally demanding and they can impose a significant delay onto the resulting signal. This delay may not be acceptable in many real-time applications. Therefore, we would like to have a means of achieving the benefits of inverse filtering while overcoming the limitations that make it impractical in most real-world applications. There are presently no means available to adequately perform this task.

As described above there are numerous situations where the reverberation found in an audio signal is not appropriate for its intended final application. Therefore, there is a need to be able to modify the direct sound component and/or the reverberant sound component of the audio signal. Furthermore we would like to be able to modify this reverberation without having to directly measure the acoustic space in which it was recorded. These problems have not been satisfactorily solved to date.

SUMMARY OF THE INVENTION

In accordance with one aspect of this invention, the present invention addresses the above need by providing a method and apparatus for identifying and altering the reverberant component of an audio signal.

The reverberant component of a signal is determined by the reverberant system in which the signal was recorded or captured. The characteristics of the reverberant system are fully described by its impulse response (between the sound source and the microphone). An impulse response can also be viewed in the frequency domain by calculating its Fourier transform (or some other transform). The Fourier representation provides both a magnitude response and a phase response. The invention relies on dividing the impulse response representing the reverberant system into blocks, where each block represents a portion of the impulse response. It further relies on estimating the impulse response by a magnitude response estimate of the frequency domain representation of each of the blocks. Since the human auditory system is relatively insensitive to phase over short durations, the magnitude response based representation forms a perceptually adequate estimate of the true impulse response.

In accordance with one aspect of the invention, methods are presented for deriving block-based estimates of the magnitude response based representation of the impulse response based on tracking changes in signal level across both time and frequency. The methods derive the block-based estimates of the magnitude response of the impulse response directly from the signal, and do not require direct measurement of the impulse response. The methods rely on the fact that, at any given point in time, the energy in the signal is composed of the energy in the current dry signal plus the sum of the energies in the reverberant components of all previous signals.

The invention uses the block-based estimates of the magnitude response of the impulse response to identify and extract the energy related to the reverberant component of a signal.

According to another aspect of the invention, the characteristics of the reverberant component of a signal can be altered by adjusting the block-based estimates of the magnitude response of the impulse response.

According to another aspect of the invention, the reverberant characteristics of a source reverberant system derived from a first signal can be applied to a second signal.

The various aspects of the invention allow the reverberant component of a signal to be altered so that it is more appropriate for its intended final application.

The method and apparatus may also include a perceptual model. The primary purpose of the perceptual model is to reduce the audibility of any artifacts resulting from the processing. This may be done by determining which portions of the reverberant signal are masked by other portions of the reverberant signal. Masking is the phenomenon that occurs in the human auditory system by which a signal that would otherwise be audible is rendered inaudible by the presence of another signal. By including a perceptual model in the processing, only the audible portion of the reverberant signal is extracted, thus reducing the amount by which the frequencies of the original signal are modified. The perceptual model also provides interactions of internal parameters across time and frequency to reflect the masking properties of the ear. As a result, the artifacts that result from modifying these frequencies are reduced.

The method and apparatus may also include one or more source models. The purpose of one source model is to provide a model of the acoustic characteristics of the original dry sound source. The purpose of the second source model is to provide a model of the characteristics of the reverberant system. By knowing the acoustic characteristics of the original dry signal and the reverberant system, better decisions can be made regarding which portions of the input signals are due to the dry signal and which are due to the reverberation. For example, most reverberant systems (rooms) can be well-modeled as a system that decays exponentially over time.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 depicts a reverberant room with a sound source and a receiving microphone.

FIG. 2 depicts the components of an impulse response with representation of the block-based decomposition.

FIG. 3 illustrates a schematic diagram of Signal Processor 5.

FIG. 4 depicts block-based convolution in the time domain.

FIG. 5 depicts block-based convolution in the frequency domain.

FIG. 6 depicts frequency domain block-based decomposition of a signal into dry and reverberant components.

FIG. 7 depicts the frequency domain block-based convolution operation of the Recompose Processor 38.

FIG. 8 depicts a means of creating a multichannel output signal from a stereo input signal.

DETAILED DESCRIPTION

The present invention provides a means of altering the reverberant component of a signal. This is accomplished generally by first obtaining a perceptually relevant estimate of the frequency-domain representation of the impulse response of the underlying reverberant system. Using this estimate of the impulse response, the signal is processed so as to extract the reverberant component of the signal, thus obtaining an estimate of the dry signal and an estimate of the reverberant signal. If desired, further processing may be applied to the dry signal and the reverberant signal.

The impulse response of an acoustic space provides a complete description of the reverberant system. Using the earlier example of a singer in a concert hall, the reverberant system (in this case, the concert hall) can be completely described by the impulse response between the singer and the recording microphone. It is well appreciated that various acoustic spaces (e.g. a concert hall versus a bathroom) can have very different perceived reverberant conditions. These differences are described by the differences in the impulse responses of the various spaces.

The impulse response of a reverberant system can be better understood by considering FIG. 1 which shows a sound source s(t) 1 in a reverberant room 2, with a recording microphone 3. If the sound source consists of an impulsive sound then what is recorded at the microphone will be the impulse response of the reverberant system between the sound source and the microphone. The impulse response includes the direct sound component 4, which is the first sound to reach the microphone since it has the shortest distance between the sound source and the microphone. Following the direct sound component will be a series of reflected sounds (reflections) as shown by the dotted lines in the figure. The time-of-arrival and the amplitude of the reflections determine the characteristics of the reverberant system. The reflections that arrive after the direct sound component make up the reverberant component. Therefore, one effect of the reverberant system is to add reverberation to the original dry signal. That is, the reverberation adds energy to the original dry signal. Mathematically, this is represented as m(t)=s(t)+r(t), where r(t) is the reverberant signal component that results from the signal s(t) passing through the reverberant system described by the impulse response h(t).

An example of an impulse response is given in FIG. 2. The first vertical line represents the direct sound 4 while the remaining lines represent the reflections. The height of each line indicates its amplitude and its location on the time axis indicates its time-of-arrival. As time goes on the number of reflections increases to the point where it is no longer possible to identify individual reflections. Eventually the reflections evolve into a diffuse exponentially decaying system. This is typically referred to as the reverberant tail 11 of the impulse response.

The so-called early reflections 12 arrive soon after the direct sound component and have a different perceptual effect than the reverberant tail. These early reflections provide perceptual clues regarding the size of the room and the distance between the source and the microphone. The early reflections are also important in that they can provide improved clarity and intelligibility to a sound. The reverberant tail also provides perceptual clues regarding the acoustic space. It is common to divide an impulse response of an acoustic space into three conceptual parts—the direct sound 4, the early reflections 12, and the reverberant tail 11.

It is important to note that an acoustic space does not have a single impulse response. Using the example of FIG. 1 we see that there is an impulse response for the room when the sound source 1 is located at a particular location and the microphone 3 is located at a given location. If either the sound source or microphone is moved (even by a small amount) then we have a different impulse response. Therefore, for any given room there are effectively an infinite number of possible impulse responses since there are effectively an infinite number of possible combinations of locations of 1 and 3.

An impulse response can also be viewed in the frequency domain by calculating its Fourier transform (or some other transform), and so a reverberant system can be described completely in terms of its frequency domain representation. H(ω). The variable ω indicates frequency. The Fourier representation of the impulse response provides us with both a magnitude response and a phase response. Generally speaking the magnitude response provides information regarding the relative levels of the different frequency components in the impulse response, while the phase response provides information regarding the temporal aspects of the frequency components. Moving the sound source 1 or the microphone 3 from one location in a room to a nearby location does not tend to have much effect on the magnitude response, whereas it does tend to have a quite dramatic effect on the phase response. That is, nearby impulse responses in a room tend to have similar magnitude responses, but will have very different phase responses.

Day to day experience tells us that we are not particularly sensitive to the differences in the impulse responses within a given room. For example, as we move around in a room while listening to someone talk we do not tend to hear dramatic changes in the sound of that person's voice even though the impulse response is changing continuously as we move. The reason that we do not hear dramatic differences is because the ear is primarily sensitive to the gross features of an impulse response and is not sensitive to the fine detail. More specifically, the ear is far less sensitive to changes in the phase response as compared to changes in the magnitude response of an impulse response. In general, the ear is quite insensitive to phase over short time periods (D. L. Wang and J. S. Lim, “The unimportance of phase in speech enhancement,” IEEE Trans. Acoust. Speech, Signal Processing, vol. ASSP-30, no. 4, pp. 679-681, August 1982). As noted above, the various impulse responses in a room tend to have similar magnitude responses, but will have very different phase responses.

The present invention operates by producing a frequency domain estimate of the estimate of the magnitude of the reverberant energy in the input signal. This estimate of the magnitude of the reverberant energy is subtracted from the input signal, thus providing an estimate of the magnitude of the input signal. The phase of the reverberant input signal is used to approximate the phase of the original dry signal. If this process is done using the entire impulse response as a whole, then it is likely that severe time-domain artifacts would be audible in the processed signal. Therefore, in the present invention, the estimate of the overall impulse response is divided into short blocks, and the processing is performed in a block-based manner. The length of the blocks is chosen to be short enough that the ear does not perceive any time-domain artifacts due to errors in the phase of the processed output signals.

In general, in the present invention, a signal processor 5 operates on the input signal m(t) 3 to decompose it into its different components 6. These components may consist of an estimate {tilde over (s)}(t) of the original dry signal s(t) 1 and an estimate {tilde over (r)}(t) of the reverberant component r(t). The estimate {tilde over (r)}(t) of the reverberant component may be further decomposed into sub-components representing estimates {tilde over (r)}₁(r), {tilde over (r)}₂(t), . . . , {tilde over (r)}_(K)(t), of the different parts of the reverberant signal. In general, the signal processor 5 may also modify any or all of the dry and reverberant signal component estimates. The invention operates on m(t) in the frequency domain. The input signal m(t) 3 is converted to a frequency domain representation by applying an overlapping analysis window 21 to a block of time samples. The time-to-frequency domain processor 22 produces an input spectrum in response to input time samples. To achieve time-to-frequency domain conversion, the time-to-frequency domain processor may execute a Discrete Fourier Transform (DFT), wavelet transform, or other transform, or may be replaced by or may implement an analysis filter bank. In this embodiment, a DFT is used. It will be appreciated that the input signal m(t) does not need to be derived from a microphone as depicted in FIG. 1. The invention can operate on any audio signal regardless of how it was produced.

The impulse response estimator 24 operates on the frequency domain representation of the input signal M(ω) 25 to produce a perceptually relevant estimate {tilde over (H)}(ω) 23 of the frequency domain representation of the impulse response H(ω). Generally, the impulse response estimator 24 operates on the input signal to produce a block-based estimate of H(ω). The block-based estimate of the impulse response consists of a plurality of block estimates {tilde over (H)}₀(ω), {tilde over (H)}₁(ω), {tilde over (H)}₂(ω), . . . 16 which correspond to frequency domain estimates of the blocks of the impulse response h₀(t), h₁(t), h₂(t), . . . 15 as shown in FIG. 2.

The reverberation adjustment processor 26 is operable to adjust frequency components of the input signal spectrum M(ω) in response to one or more frequency-domain block estimates 16 of the impulse response to produce one or more reverberation-adjusted frequency spectra 27 including adjusted frequency components of the input signal spectrum M(ω). Generally, the reverberation adjustment processor 26 derives one or more reverberation-adjusted frequency spectra 27 that will pass, amplify, or attenuate a component of the input signal based on whether that component is part of the original dry signal or part of the reverberant signal.

The signal modifier 28 is operable to modify and mix frequency components of the reverberation-adjusted frequency spectra 27 as well as the input signal spectrum 25 to produce one or more output frequency spectra Z₁(ω), Z₂(ω), . . . , Z_(L)(ω) 29.

The frequency-to-time domain processors 30 are operable to produce output frames of time samples z₁(t), z₂(t), . . . , z_(L)(t) 32 in response to the output frequency spectra. The frequency-to-time domain processors generally perform the inverse function of the time-to-frequency domain processor 22. Consequently, in the preferred embodiment, each frequency-to-time domain processor performs an Inverse Discrete Fourier Transform (IDFT).

The decompose processor 33 uses the block-based estimate {tilde over (H)}(ω) 23 of the frequency domain representation of the impulse response H(ω) and operates on the frequency domain representation of the input signal M(ω) 25 to produce an estimate of the original dry signal {tilde over (S)}(ω) 34 and estimates {tilde over (R)}₁(ω), {tilde over (R)}₁(ω), . . . , {tilde over (R)}_(K)(ω) 35 of one or more components of the reverberant signal.

The Dry Signal Modifier 36 is operable to adjust frequency components of the estimate {tilde over (S)}(ω) 34 of the original dry signal to produce a modified estimate {tilde over (S)}′(ω) of the original dry signal. The Reverberant Signal Modifier 37 is operable to independently adjust frequency components of one or more of the estimates {tilde over (R)}₁(ω), {tilde over (R)}₁(ω), . . . , {tilde over (R)}_(K)(ω) of the reverberant signal components to produce modified estimates of the reverberant signal components.

Generally, the recompose processor 38 takes the modified estimate {tilde over (S)}′(ω) of the original dry signal and the modified estimates {tilde over (R)}₁′(ω), {tilde over (R)}₁′(ω), . . . , {tilde over (R)}_(K)′(ω) of the reverberant signal components and produces one or more reverberation-adjusted frequency spectra 27.

A second input signal s₂(t) 40 may be provided to the recompose processor in order to add reverberation to the second input signal. The input signal s₂(t) 40 is converted to a frequency domain representation by applying an overlapping analysis window 41 to a block of time samples. The time-to-frequency domain processor 42 produces an input spectrum in response to the input time samples. The characteristics of the added reverberation are determined by the block-based estimate of the impulse response 23.

The performance of the invention may be improved by including one or more source models 43 in the impulse response estimator 24. A source model may be used to account for the physical characteristics of the reverberant system. For example, the response of a reverberant system (room) tends to decay exponentially over time.

The block-based estimate derived by the impulse response estimator 24 can be stored 44 and retrieved for later use. The impulse response modifier 45 is operable to independently adjust the frequency components of the block-based estimates of the impulse response to produce modified block-based estimates of the impulse response.

The performance of the decompose processor 33 may be improved by including a source model 46. One goal of a source model may be to account for the physical characteristics of the dry sound source when deciding how much a given frequency band should be attenuated or amplified. The performance of the decompose processor 33 may also be improved by including a perceptual model 47. One goal of the perceptual model is to limit the amount by which frequency bands are modified such that, in extracting the dry signal, an unwanted reverberant component is only attenuated to the point where it is masked by the dry signal. Similarly, in extracting the reverberant signal, an unwanted dry signal component is only attenuated to the point where it is masked by the reverberant signal. In practice, aspects of the perceptual model and the source model may be combined.

The performance of the recompose processor 38 may be improved by including a source model 48. One goal of a source model may be to account for the physical characteristics of the dry sound source when deciding how much a given frequency band should be attenuated or amplified. The performance of the decompose processor 38 may also be improved by including a perceptual model 49. One goal of the perceptual model is to limit the amount by which frequency bands are modified such that, in deriving the reverberation-adjusted spectra, unwanted components of the dry and reverberant signals are only attenuated to the point where they are masked by the desired signal components. In practice, aspects of the perceptual model and the source model may be combined.

In practice, aspects of the source models 46, 48 and the perceptual models 47, 49 may be combined and shared between the decompose processor 33 and the recompose processor 38.

The operations of the various parts of the invention are independently controllable by the controller 50.

Preferred Embodiment of the Present Invention

The following describes a preferred embodiment for decomposing an input signal into its original dry signal component and reverberant component. The reverberant component is further decomposed into multiple sub-components. This preferred embodiment would be used in numerous applications including altering a speech or music signal to obtain the desired reverberant characteristics, enhancing the intelligibility of a speech signal, and creating additional audio channels from a monophonic, stereo or multichannel input signal.

The preferred embodiment is described for the case where the input signal is monophonic. In describing this embodiment it is assumed that the input signal m(t) 3 consists of a dry sound source s(t) 1 combined with a reverberant component r(t), where r(t) is the result of s(t) passing through the reverberant system having an impulse response h(t). It will be appreciated that the input signal 3 may be created by other means.

The input signal m(t) is converted to a frequency domain representation at 22. In this embodiment a fast implementation of the Discrete Fourier Transform (DFT) is employed with a 50% overlapping root-Hanning window 21. It will be appreciated by those skilled in the art that other frequency domain representations may be employed, including but not limited to the discrete cosine transform, or a wavelet transform. Alternatively, a filter bank may be employed to provide a frequency domain representation. It will be further appreciated that other windowing functions may be employed and that the amount of overlapping is not restricted to 50%. It will be appreciated that zero-padding of the time samples may be used in the time-to-frequency conversion to reduce any temporal aliasing artifacts that may result from the processing. The frequency domain representation of the input signal is M(ω) 25.

The Impulse Response Estimator 24 operates on the frequency domain representation of the input signal to produce a block-based estimate of the frequency domain representation of the impulse response {tilde over (H)}(ω) 23. As depicted in FIG. 2, the impulse response h(t) is divided into B+1 blocks consisting of h₀(t), h₁(t), . . . , h_(B)(t) 15 with corresponding frequency domain representations H₀(ω), H₁(ω), . . . , H_(B)(ω) 16. In the preferred embodiment, all the blocks are the same size, each having a length of D. The Impulse Response Estimator produces a set perceptually relevant estimates of H₀(ω), H₁(ω), . . . , H_(B)(ω). In this embodiment, these perceptually relevant estimates {tilde over (H)}(ω), {tilde over (H)}₁(ω), . . . , {tilde over (H)}_(B)(ω) are based on estimates of the magnitudes of H₀(ω), H₁(ω), . . . , H_(B)(ω) respectively.

It will be appreciated by those skilled in the art that the impulse response h(t) can be reasonably approximated by a finite impulse response (FIR) filter, provided that the filter is of sufficient length. Therefore, the signal m(t) can be obtained by processing the dry signal s(t) through an FIR filter having an impulse response equal to h(t). This filtering or convolution operation can be equivalently implemented using the block-based representation 15 of the impulse response. This block-based implementation is shown in FIG. 4.

The signal s(t) is processed through B+1 FIR filters having impulse responses equal to h₀(t), h₁(t), . . . , h_(B)(t). In order to time-align the outputs of these FIR filters, the signal s(t) is delayed by a series of delay elements δ(t−D) 17. Each delay element provides a delay of D samples, which corresponds with the length of the block FIR filters. Each delay element can be implemented as an FIR filter of length D having all but the last filter tap equal to zero and the last filter tap equal to 1. The block-based FIR filtering operation can be described mathematically as follows,

m(t)=s(t)*h ₀(t)+s(t)*δ(t−D)*h ₁(t)+ . . . +s(t)*δ(t−BD)*h _(B)(t)

or equivalently,

${m(t)} = {\sum\limits_{i = 0}^{B}{{s(t)}*{\delta \left( {t - {iD}} \right)}*{h_{i}(t)}}}$

where * represents the convolution operation.

As indicated in FIG. 4, this mathematical description may be extended to show the direct signal component and the reverberant component explicitly as follows,

m(t) = s(t) * h₀(t) + r(t) ${m(t)} = {{{s(t)}*{h_{0}(t)}} + {\sum\limits_{i = 1}^{B}{{s(t)}*{\delta \left( {t - {iD}} \right)}*{h_{i}(t)}}}}$ where s(t) * h₀(t)

includes the direct signal component, and

${r(t)} = {\sum\limits_{i = 1}^{B}{{s(t)}*{\delta \left( {t - {iD}} \right)}*{h_{i}(t)}}}$

is the reverberant signal component 7. In practice, because h₀(t) is of length D, we expect part of the initial portion of the reverberant signal to be in s(t)*h₀(t). This is typically not a problem if D is chosen to be sufficiently short. If D is sufficiently short, then the portion of the reverberant signal within s(t)*h₀(t) will not be audible due to the masking properties of the human auditory system. Therefore, it can be said that s(t)*h₀(t) is a perceptually relevant representation of the direct signal component, while r(t) is a perceptually relevant representation of the reverberant signal component.

It will be appreciated by those skilled in the art that convolution in the time domain is equivalent to multiplication in the frequency domain. As such, the block-based FIR filtering process depicted in FIG. 4 can be alternatively performed in the frequency domain as shown in FIG. 5. The B+1 FIR filters h₀(t), h₁(t), . . . , h_(B)(t) of FIG. 4 are now replaced by their frequency domain equivalents H₀(ω), H₁(ω), . . . , H_(B)(ω). The delay elements are now denoted by Z^(−D) 18, where D represents the length of the delay. The frequency domain processing can therefore be given as,

M(ω) = S(ω)H₀(ω) + S(ω)z^(−D)H₁(ω) + … + s(ω)z^(−BD)H_(B)(ω) ${{or}\mspace{14mu} {equivalently}},{{M(\omega)} = {\sum\limits_{i = 0}^{B}{{S(\omega)}z^{- {iD}}{H_{i}(\omega)}}}}$

As indicated in FIG. 5 this mathematical description may be extended to show the direct signal component and the reverberant component explicitly as follows,

M(ω) = S(ω)H₀(ω) + R(ω) ${M(\omega)} = {{{S(\omega)}{H_{0}(\omega)}} + {\sum\limits_{i = 1}^{B}{{S(\omega)}z^{- {iD}}{H_{i}(\omega)}}}}$ where S(ω)H₀(ω)

is the frequency domain representation containing the direct signal component, and

${R(\omega)} + {\sum\limits_{i = 1}^{B}{{S(\omega)}z^{- {iD}}{H_{i}(\omega)}}}$

is the frequency domain representation of the reverberant signal component 19.

It will be appreciated by those skilled in the art that the effects of an FIR filter can be undone using an appropriate infinite impulse response (IIR) filter. Therefore, if the B+1 FIR filters h₀(t), h₁(t), . . . , h_(B)(t) are known precisely, then it is possible to recover the original dry signal s(t) from m(t) using an appropriate IIR filter structure. The original dry signal can also be recovered if the frequency domain representations H₀(ω), H₁(ω), . . . , H_(B)(ω) of the FIR filters are known. The present invention makes use of this concept.

In many situations it is not possible to measure or derive the exact values of H₀(ω), H₁(ω), . . . , H_(B)(ω) and thus it is not possible to exactly recover s(ω) from m(t). In the present invention, perceptually relevant estimates of H₀(ω), H₁(ω), . . . , H_(B)(ω) are used to derive an estimate of S(ω). These perceptually relevant estimates {tilde over (H)}₀(ω), {tilde over (H)}₁(ω), . . . , {tilde over (H)}_(B)(ω) are based on estimates of the magnitudes of H₀(ω), H₁(ω), . . . , H_(B)(ω) respectively.

The block-based estimate of the frequency domain representation of the impulse response {tilde over (H)}(ω), 23 is provided to the Decompose Processor 33. The Decompose Processor operates on the frequency domain representation of the input signal M(ω) 25 to produce an estimate of the direct signal component 34 and an estimate of the reverberant components 35. In the preferred embodiment the Decompose Processor operates as shown in FIG. 6. It can be seen from the figure that the Decompose Processor uses the perceptually relevant filter estimates {tilde over (H)}₀(ω), {tilde over (H)}₁(ω), . . . , {tilde over (H)}_(B)(ω) to create a block-based IIR filter structure. The IIR filter structure takes M(ω) as its input and produces an estimate of the spectrum of the direct signal component {tilde over (S)}(ω) 34 as well as an estimate of the spectrum of the reverberant signal component {tilde over (R)}(ω) 35 The process can be described mathematically as follows,

${{\overset{\sim}{S}(\omega)}{{\overset{\sim}{H}}_{0}(\omega)}} = {{M(\omega)} - \left( {{{S(\omega)}z^{- D}{{\overset{\sim}{H}}_{1}(\omega)}} + \ldots + {{S(\omega)}z^{- {BD}}{{\overset{\sim}{H}}_{B}(\omega)}}} \right)}$ ${\overset{\sim}{S}(\omega)} = \frac{{M(\omega)} - \left( {{{S(\omega)}z^{- D}{{\overset{\sim}{H}}_{1}(\omega)}} + \ldots + {{S(\omega)}z^{- {BD}}{{\overset{\sim}{H}}_{B}(\omega)}}} \right)}{{\overset{\sim}{H}}_{0}(\omega)}$

To better understand this operation, it is useful to consider the process for a given block of the input signal M₀(ω). M₀(ω) consists of the current block of the dry signal convolved with H₀(ω), plus the previous block of the dry signal convolved with H₁(ω), and so on for the B previous blocks of the dry signal. We now use a subscript to indicate the block of the dry signal, and so S_(i)(ω) represents the frequency domain representation of the previous ith block of the dry signal component. Given this, the operation of the Decomposition Processor can be described mathematically as,

${{\overset{\sim}{S_{0}}(\omega)}{{\overset{\sim}{H}}_{0}(\omega)}} = {{M_{0}(\omega)} - \left( {{{{\overset{\sim}{S}}_{1}(\omega)}{{\overset{\sim}{H}}_{1}(\omega)}} + \ldots + {{{\overset{\sim}{S}}_{B}(\omega)}{{\overset{\sim}{H}}_{B}(\omega)}}} \right)}$ ${\overset{\sim}{S_{0}}(\omega)} = \frac{{M_{0}(\omega)} - \left( {{{\overset{\sim}{S_{1}}(\omega)}{{\overset{\sim}{H}}_{1}(\omega)}} + \ldots + {{{\overset{\sim}{S}}_{B}(\omega)}{{\overset{\sim}{H}}_{B}(\omega)}}} \right)}{{\overset{\sim}{H}}_{0}(\omega)}$

where {tilde over (S)}_(i)(ω) is an estimate of the true value of S_(i)(ω). In the preferred embodiment {tilde over (H)}₀(ω) is assumed to be equal 1, thus giving,

{tilde over (S)} ₀(ω)=M ₀(ω)−({tilde over (S)} ₁(ω){tilde over (H)} ₁(ω)+ . . . +{tilde over (S)} _(B)(ω){tilde over (H)} _(B)(ω))

Therefore, in the preferred embodiment of the present invention an estimate of the current block of the dry signal component 34 is obtained from the estimates of previous blocks of the dry signal, as well as the block-based estimates of the impulse response of the reverberant system. It should be noted that ({tilde over (S)}₁(ω){tilde over (H)}₁(ω)+ . . . +{tilde over (S)}_(B)(ω){tilde over (H)}_(B)(ω)) of the above equation is an estimate of the reverberant signal component 35. That is,

{tilde over (R)} ₀(ω)={tilde over (S)} ₁(ω){tilde over (H)} ₁(ω)+ . . . +{tilde over (S)} _(B)(ω){tilde over (H)} _(B)(ω)

In the preferred embodiment the overall reverberant signal component is divided into K reverberant sub-components {tilde over (R)}_(0,1)(ω), {tilde over (R)}_(0,2)(ω), . . . , {tilde over (R)}_(0,K)(ω) as follows,

{tilde over (R)} _(0,k)(ω)=p _(1,k)(ω){tilde over (S)} ₁(ω){tilde over (H)} ₁(ω)+ . . . +p _(B,k)(ω){tilde over (S)} _(B)(ω){tilde over (H)} _(B)(ω)

Where p_(i,k)(ω) [i=0, . . . , B and k=1, . . . . , K] are frequency-dependent gain vectors that allow the overall reverberant signal component to be selectively divided across time and frequency. This enables one to selectively extract portions of the reverberant signal that result from the dry sound being convolved by specific parts of the impulse response. For example, the reverberant signal component due to the early reflections 12 could be extracted separately from the components due to the reverberant tail 11. Similarly, different parts of the early reflections and/or the reverberant tail may be extracted separately. Moreover, the values of p_(i,k)(ω) may be chosen to selectively separate the low and high frequencies of different components of the reverberant signal.

In the preferred embodiment the block-based impulse response is estimated by the magnitude of the frequency domain representations of the B+1 blocks. Therefore, the above equations can be modified as follows,

|{tilde over (S)} ₀(ω)|² =|M ₀(ω)|²−(|{tilde over (S)} ₁(ω)|² |{tilde over (H)} ₁(ω)|² + . . . +|{tilde over (S)} _(B)(ω)|² |{tilde over (H)} _(B)(ω)|²)

|{tilde over (R)} ₀(ω)|² =|{tilde over (S)} ₁(ω)|² |{tilde over (H)} ₁(ω)|² + . . . +|{tilde over (S)} _(B)(ω)|² |{tilde over (H)} _(B)(ω)|²

|{tilde over (R)} _(0,k)(ω)|² =p _(1,k)(ω)|{tilde over (S)} ₁(ω)|² |{tilde over (H)} ₁(ω)|² + . . . +p _(B,k)(ω)|{tilde over (S)} _(B)(ω)|² |{tilde over (H)} _(B)(ω)|²

The phase of the input signal M₀(ω) is used as the phase response for {tilde over (S)}₀(ω) as well as for {tilde over (R)}_(0,1)(ω), {tilde over (R)}_(0,2)(ω), . . . , {tilde over (R)}_(0,K)(ω).

In the preferred embodiment the Decompose Processor operates by applying different gain vectors to the input signal,

${{\overset{\sim}{S}}_{0}(\omega)} = {{G_{S}(\omega)}{M_{0}(\omega)}}$ R_(0, 1)(ω) = G_(R₁)(ω)M₀(ω) R_(0, 2)(ω) = G_(R₂)(ω)M₀(ω) … R_(0, K)(ω) = G_(R_(K))(ω)M₀(ω)

The gain vector for the dry signal component is derived by,

${G_{s}(\omega)} = {{{\overset{\sim}{S}}_{0}(\omega)}/{M_{0}(\omega)}}$ ${G_{s}(\omega)} = \frac{{{M_{0}(\omega)}}^{2} - \begin{pmatrix} {{{{\overset{\sim}{S_{1}}(\omega)}}^{2}{{{\overset{\sim}{H}}_{1}(\omega)}}^{2\;}} + \ldots +} \\ {{{{\overset{\sim}{S}}_{B}(\omega)}}^{2}{{{\overset{\sim}{H}}_{B}(\omega)}}^{2}} \end{pmatrix}}{{{{\overset{\sim}{M}}_{0}(\omega)}}^{2}}$ ${G_{s}(\omega)} = \left\{ \begin{matrix} {{{MinGain}(\omega)};} & {{G_{s}(\omega)} < {{MinGain}(\omega)}} \\ {{G_{s}(\omega)};} & {otherwise} \end{matrix} \right.$

The frequency dependent parameter MinGain(ω) prevents G_(S)(ω) from falling below some desired value.

In the preferred embodiment the gain vector is a vector of real values and thus it only affects the magnitude of M₀(ω). As a result {tilde over (S)}₀(ω) has the same phase response as M₀(ω). The gain vectors for the reverberant signal components are found in similar fashion.

The values of the gain vectors G_(S)(ω), G_(R) ₁ (ω), . . . , G_(R) _(K) (ω) are further refined by employing a Perceptual Model 47 and a Source Model 46. The Perceptual Model accounts for the masking properties of the human auditory system, while the Source Model accounts for the physical characteristics of the sound sources. In this embodiment, the two models are combined and provide a smoothing of the gain vectors G_(S)(ω), G_(R) ₁ (ω), . . . , G_(R) _(K) (ω) over time and frequency. The smoothing over time is achieved as follows,

G_(S, τ)^(′)(ω) = (1 − γ(ω)) ⋅ G_(S, τ − 1)^(′)(ω) + γ(ω) ⋅ G_(S, τ)(ω) G_(R₁, τ)^(′)(ω) = (1 − γ(ω)) ⋅ G_(R₁, τ − 1)^(′)(ω) + γ(ω) ⋅ G_(R₁, τ)(ω) G_(R₂, τ)^(′)(ω) = (1 − γ(ω)) ⋅ G_(R₂, τ − 1)^(′)(ω) + γ(ω) ⋅ G_(R₂, τ)(ω) … G_(R_(K), τ)^(′)(ω) = (1 − γ(ω)) ⋅ G_(R_(K), τ − 1)^(′)(ω) + γ(ω) ⋅ G_(R_(K), τ)(ω)

where τ indicates the current time frame of the process. γ(ω) determines for each frequency band the amount of smoothing that is applied to the gain vectors G_(S)(ω), G_(R) ₁ (ω), . . . , G_(R) _(K) (ω) over time. It will be appreciated that a different value of γ(ω) can be used for each gain vector. It will also be appreciated that the values of γ(ω) can vary with frequency. The values of γ(ω) may also change over time and they be dependent upon the input signal, or upon the values of the gain vectors.

The simultaneous masking properties of the human auditory system can be viewed as a form of smoothing or spreading of energy over frequency. In this embodiment, the simultaneous masking is computed as follows,

Masking_(S)(ω) = spread 1(ω) ⋅ G_(S, τ)^(′)(ω) + spread 2(ω) ⋅ Masking_(S)(ω − 1) Masking_(R₁)(ω) = spread 1(ω) ⋅ G_(R₁, τ)^(′)(ω) + spread 2(ω) ⋅ Masking_(R₁)(ω − 1) Masking_(R₂)(ω) = spread 1(ω) ⋅ G_(R₂, τ)^(′)(ω) + spread 2(ω) ⋅ Masking_(R₂)(ω − 1) Masking_(R_(K))(ω) = spread 1(ω) ⋅ G_(R_(K), τ)^(′)(ω) + spread 2(ω) ⋅ Masking_(R_(K))(ω − 1)

The variables spread1(ω) and spread2(ω) determine the amount of simultaneous masking across frequency. In this embodiment, spread1(ω) and spread2(ω) are designed to account for the fact that the bandwidths of the auditory filters increase with increasing frequency, and so more spreading is applied at higher frequencies.

The gain vectors are refined by adding the effects of the estimated masking. The frequency dependent parameter μ(ω) determines the level at which the masking estimate is added to the previously computed gain vector values,

G_(S, τ)^(″)(ω) = G_(S, τ)^(′)(ω) + μ(ω) ⋅ Masking_(S)(ω) G_(R₁, τ)^(″)(ω) = G_(R₁, τ)^(′)(ω) + μ(ω) ⋅ Masking_(R₁)(ω) G_(R₂, τ)^(″)(ω) = G_(R₂, τ)^(′)(ω) + μ(ω) ⋅ Masking_(R₂)(ω) … G_(R_(K), τ)^(″)(ω) = G_(R_(K), τ)^(′)(ω) + μ(ω) ⋅ Masking_(R_(K))(ω)

This step can cause the gain vector values to exceed 1.0. In this embodiment, the maximum gain values are limited to 1.0, although other limits are possible,

${G_{S,\tau}^{''}(\omega)} = \left\{ \begin{matrix} {1.0;} & {{G_{S,\tau}^{''}(\omega)} > 1.0} \\ {{G_{S,\tau}^{''}(\omega)};} & {otherwise} \end{matrix} \right.$

Similar operations are performed for the remaining gain vectors. These final gain vectors are applied to the input signal M(ω) to produce the dry signal component 34 and the reverberant signal components 35. The dry signal component 34 may be modified by the Dry Signal Modifier 36 if desired. In this embodiment, modifications may include, but are not limited to level adjustments, frequency filtering, and dynamic range processing. The reverberant signal components 35 are operated on by the Reverberant Signal Modifier 37, where in this embodiment, modifications may include, but are not limited to level adjustments, frequency filtering, and dynamic range processing.

${{\overset{\sim}{S}}^{\prime}(\omega)} = {{Modify}\left\lbrack {\overset{\sim}{S}(\omega)} \right\rbrack}$ R₁^(′)(ω) = Modify[R₁(ω)] R₂^(′)(ω) = Modify[R₂(ω)] … R_(K)^(′)(ω) = Modify[R_(K)(ω)]

The Recompose Processor 38 combines the modified dry sound estimate {tilde over (S)}′(ω), and the modified estimates of the reverberant signal sub-components R₁′(ω), R₂′(ω), . . . , R_(K)′(ω) to produce one or more reverberation-adjusted frequency spectra 27. Another operation performed by the Recompose Processor is to apply a block-based impulse response to a signal X(ω) 60 to produce an output signal Y(ω) 61 as depicted in FIG. 7. The block-based impulse response may consist of either the original |{tilde over (H)}_(i)(ω)|² derived by the Impulse Response Estimator 24, or a modified version |{tilde over (H)}_(i)(ω)|² 62. The input signal X(ω) to this process may consist of one or more of {tilde over (S)}′(ω), R₁′(ω), R₂′(ω), . . . , R_(K)′(ω), or a secondary input signal S₂(ω). Different versions of |{tilde over (H)}_(i)(ω)|² may be used for different input signals. The output signals from this block-based convolution process provide additional reverberation-adjusted frequency spectra 27. The Recompose Processor 38 includes a Source Model and a Perceptual Model. In this embodiment the Source Model 48 and the Perceptual Model 49 are combined with the Source Model 46 and Perceptual Model 47 of the Decompose Processor 33.

The unprocessed input signal M(ω) 25 and the reverberation-adjusted frequency spectra 27 are provided to the Signal Modifier 28. The Signal Modifier produces the final L output frequency spectra Z₁(ω), Z₂ (ω), . . . , Z_(L)(ω), which are converted to the time domain to obtain the desired output signals z₁(t), z₂(t), . . . , z_(L)(t) 32. In this embodiment the frequency-to-time domain converter 30 consists of a fast implementation of the Inverse Discrete Fourier Transform (IDFT) followed by a root-Hanning window 31.

For applications where the invention is used to create a monophonic output signal (i.e., L=1), the Signal Modifier 28 operates on the reverberation-adjusted spectra 27 to combine them to create a modified version of the input signal with modified reverberant characteristics.

For applications where the invention is used to create additional audio channels from a monophonic input signal, the Signal Modifier's 28 operations include operating on the reverberation-adjusted frequency spectra 27 to combine them to create two or more unique output frequency spectra Z₁(ω), Z₂(ω), . . . , Z_(L)(ω).

In some applications there is no need for the Signal Modifier 28 to modify either the unprocessed input signal M(ω) 25 or the reverberation-adjusted frequency spectra 27, and so the Signal Modifier may simply pass these signals to the final output frequency spectra Z₁(ω), Z₂(ω), . . . , Z_(L)(ω).

The previous steps in the preferred embodiment require a suitable block-based estimate of the impulse response of the reverberant system. The Impulse Response Estimator 24 operates on the frequency-domain representation of the input signal M(ω) 25 to produce the block-based estimates {tilde over (H)}₀(ω), {tilde over (H)}₁(ω), . . . , {tilde over (H)}_(B)(ω) of the impulse response.

Two factors combine to determine the rate at which a reverberant input signal M(ω) 25 decays (or grows) at a given frequency. The first factor is the rate of decay (or growth) of the dry sound source s(t) 1, and the second is the rate of decay of the reverberant system. While the rate of decay of the reverberant system (e.g. a concert hall) at a given frequency is relatively constant over time, the rate of decay of the dry sound source varies continuously. Using the earlier example of a singer, the level of the singer's voice at a given frequency rises and drops continuously over time. Therefore, the fastest rate of decay of the input signal M(ω) 25 occurs when the dry sound source s(t) 1 stops at a given frequency, and the decay in the signal is due entirely to the decay of the reverberant system.

If one considers a given frequency, then it can be seen that the best opportunity to estimate |{tilde over (H)}_(i)(ω)|² is when the dry sound source s(t) 1 has just stopped at that frequency. At that point what follows is the reverberant component r(t) of the signal, and the decay of the reverberant system can be observed. Given this, one can obtain an estimate |{tilde over (H)}_(i)(ω)|² by observing the ratio of the magnitude of the current block |M₀(ω)|² to that of a previous block |M_(i)(ω)|², and estimating the minimum value of this ratio.

${{C_{i}(\omega)}}^{2} = \left\{ {{{\begin{matrix} {\frac{{{M_{0}(\omega)}}^{2}}{{{M_{i}(\omega)}}^{2}};} & {\frac{{{M_{0}(\omega)}}^{2}}{{{M_{i}(\omega)}}^{2}} < {{{\overset{\sim}{H}}_{i}(\omega)}}^{2}} \\ {{{{{{\overset{\sim}{H}}_{i}(\omega)}}^{2} \cdot {{Bias}_{i}(\omega)}} + ɛ};} & {otherwise} \end{matrix}i} = 1},\ldots \mspace{14mu},B} \right.$

where Bias_(i)(ω) is some value greater than 1.0 and ε is some small value. The frequency dependent parameter Bias_(i)(ω) prevents |C_(i)(ω)|² from being trapped at an incorrect minimum value, while ε prevents |C_(i)(ω)|² from being trapped at a value of zero. The minimum of the above ratio corresponds to the fastest rate of decay of the signal at that frequency, and therefore it corresponds to an estimate of |{tilde over (H)}_(i)(ω)|² at that frequency. This process is performed at each frequency ω for all blocks [i=1, . . . , B].

In this embodiment the Source Model is implemented as follows,

${{C_{i}(\omega)}}^{2} = \left\{ {{{\begin{matrix} {{{MaxValue}_{i}(\omega)};} & {{{C_{i}(\omega)}}^{2} > {{MaxValue}_{i}(\omega)}} \\ {{{C_{i}(\omega)}}^{2};} & {otherwise} \end{matrix}i} = 1},\ldots \mspace{14mu},B} \right.$

The parameter MaxValue_(i)(ω) prevents |C_(i)(ω)|² and thus |{tilde over (H)}_(i)(ω)|² from exceeding some value that would not be expected in real acoustic spaces. MaxValue_(i)(ω) can vary over frequency and across blocks. A temporal smoothing operation is applied to provide a more stable estimate of |{tilde over (H)}_(i)(ω)|².

|{tilde over (H)} _(i,τ)(ω)|²=α_(i)(ω)|{tilde over (H)} _(i,τ-1)(ω)|²+(1−α_(i)(ω))|C _(i)(ω)|²

Where τ indicates the current time frame of the process, and α_(i)(ω) is a frequency dependent parameter that controls the amount of temporal smoothing. α_(i)(ω) may also vary over time and across blocks, and its value may be dependent upon the current block of the input signal as well as previous blocks of the input signal.

In this embodiment, smoothing of |{tilde over (H)}_(i)(ω)|² over frequency is performed as part of the Source Model. The amount of smoothing is determined by the value of β_(i)(ω). β_(i)(ω) can vary over frequency and across blocks.

${{{\overset{\sim}{H}}_{i}^{\prime}(\omega)}}^{2} = {{{\beta_{i}(\omega)}{{{\overset{\sim}{H}}_{i}(\omega)}}^{2}} + {\frac{1 - {\beta_{1}(\omega)}}{2}\left( {{{{\overset{\sim}{H}}_{i}\left( {\omega - 1} \right)}}^{2} + {{{\overset{\sim}{H}}_{i}\left( {\omega + 1} \right)}}^{2}} \right)}}$

The final estimates |{tilde over (H)}_(i)′(ω)|² [i=1, . . . , B], of the block-based impulse response are employed to derive the gain vectors that are used to derive the estimate of the dry sound, as well as the estimates of the reverberant components.

The preferred embodiment has been described for the case where the input signal is monophonic. It will be appreciated that the present invention can be directly extended to operate on stereo and multichannel input signals. When the input signal has more than one channel, it is understood that the present invention can either operate on each channel independently, or the operations on the channels may be combined and information regarding a given channel may be used in the processing of the other channels.

The B+1 blocks 15, 16 of the impulse response do not need to be of equal size. For example, it may be desirable to use shorter blocks to represent the initial part of the impulse response in order to obtain better temporal resolution for the early reflection portion 12 of the impulse response.

The B+1 blocks 15 of the impulse response may overlap, or they may not have any overlap as depicted in FIG. 2. In the case where the blocks overlap, a window function may be used to provide a smooth transition from block to block. In the preferred embodiment, the blocks have a 50% overlap.

In the preferred embodiment the magnitude-squared |•|² of the frequency domain representation of the signals and impulse response was used in the processing. It will be appreciated that other powers of magnitude |•|^(q) can be used.

For applications where reverberation is being added to a second input signal s₂(t) 40, the Recompose Processor may include a block-based frequency domain FIR filter structure as depicted in FIG. 7. The filters consist of modified estimates of the magnitudes of the impulse response blocks {tilde over (H)}₀′(ω), {tilde over (H)}₁′(ω), . . . , {tilde over (H)}_(B)′(ω). In the preferred embodiment the Recompose Processor accomplishes this by applying gain vectors to the input signal.

In the preferred embodiment, the Decompose Processor 33 and the Recompose Processor 38 operate independently of each other. It will be appreciated that, in some applications, aspects of the two processes may be combined.

The invention can be used generally to create additional audio channels based on the input signal M(ω) 25. That is, the invention can be used to create V output channels from an input signal M(ω) 25 having U channels, where V>U. Examples of this include creating a stereo or multichannel signal from a monophonic input signal; creating a multichannel signal from a stereo input signal; and creating additional channels from a multichannel input signal. In general this is accomplished by extracting and decomposing the reverberant component of the signal into different subcomponents R₁(ω), R₂(ω), . . . , R_(K)(ω) 35, and distributing them to different output channels. A given subcomponent of the reverberant signal may be assigned to more than one output channel. The created channels may also include the estimate of the dry signal component {tilde over (S)}(ω) 34 and the input signal M(ω) 25.

In the preferred embodiment, the Decompose Processor 33 employs the block-based estimate of the impulse response {tilde over (H)}₀(ω), {tilde over (H)}₁(ω), . . . , {tilde over (H)}_(B)(ω) to operate on the input signal M(ω) 25 to derive a perceptually suitable set of reverberant subcomponents. The Recompose Processor 38 operates on the estimate of the dry signal {tilde over (S)}(ω) 34 and the reverberant subcomponents 35 to derive a set of reverberation-adjusted frequency spectra 27. In some instances the Signal Modifier 28 may assign the reverberation-adjusted frequency spectra directly to the final V output frequency spectra Z₁(ω), Z₂(ω), . . . , Z_(V)(ω) 29. The final output frequency spectra are converted to the time domain 30, and windowed 31 to provide the multichannel audio signal consisting of z₁(t), z₂(t), . . . , z_(V)(t) 32.

In other instances, the Signal Modifier 28 may selectively combine two or more of the reverberation-adjusted frequency spectra 27 to create the V output frequency spectra. The Signal Modifier may also include the unprocessed input signal M(ω) 25 in one or more of the V output frequency spectra.

As an example, one approach to creating a five-channel (V=5) output signal from a stereo input signal (U=2) is considered as depicted in FIG. 8. The Left input signal M_(Left)(ω) 70 is decomposed into its direct signal component {tilde over (S)}_(Left)(ω) and reverberant signal component {tilde over (R)}_(Left)(ω). The Left-channel direct signal component {tilde over (S)}_(Left)(ω) is sent to the Left output channel 72, while the Left-channel reverberant signal component {tilde over (R)}_(Left)(ω) is sent to the Left-Surround output channel 75. Similarly, the Right input signal M_(Right)(ω) 71 is decomposed, and the Right-channel direct signal component {tilde over (S)}_(Right)(ω) is sent to the Right output channel 73, while the Right-channel reverberant signal component {tilde over (R)}_(Right)(ω) is sent to the Right-Surround output channel 74. The Center output channel 74 is made up of some mixture g₁{tilde over (S)}_(Left)(ω)+g₂{tilde over (S)}_(Right)(ω)+g₃{tilde over (R)}_(Left)(ω)+g₄{tilde over (R)}_(Right)(ω), where g₁, g₂, g₃ and g₄ determine the relative level at which the components are mixed together. It will be appreciated that this example is simply one of the virtually unlimited means by which the invention can decompose the input signal to create additional audio channels. 

I claim:
 1. An apparatus for identifying and extracting the reverberant component of an audio signal, the apparatus comprising: a signal processor configured to receive and process an audio signal; an impulse response estimator executable with the signal processor to produce from the audio signal a representation of an estimated impulse response included in the audio signal; a decompose processor executable with the signal processor to use the representation of the estimated impulse response to decompose the audio signal into an estimated original dry signal component and an estimated reverberant signal component; a modifier executable with the signal processor to independently modify at least one of the estimated original dry signal component and the estimated reverberant signal component of the audio signal; and a recompose processor executable with the signal processor to combine the modified at least one of the estimated original dry signal component and the estimated reverberant signal component of the audio signal to produce one or more adjusted frequency spectra.
 2. The apparatus of claim 1, where the decompose processor is executable with the signal processor to apply different gain vectors to the audio signal to derive the estimated original dry signal component and the estimated reverberant signal component of the audio signal.
 3. The apparatus of claim 1, where the representation of the estimated impulse response comprises a plurality of estimated impulse responses produced based on estimates of a respective magnitude of each of the estimated impulse responses.
 4. The apparatus of claim 1, where the impulse response estimator is executable with the signal processor to produce a block-based estimate of the estimated impulse response comprising a plurality of blocks, each block containing a component of the estimated impulse response.
 5. The apparatus of claim 4, where the estimated impulse response of each of the blocks is estimated based on a rate of change of a dry sound source included in the audio signal, and a rate of decay of a reverberant component included in the audio signal.
 6. The apparatus of claim 4, where the impulse response estimator is further executable to independently adjust respective frequency components of the blocks to produce modified block-based estimates of the estimated impulse response.
 7. The apparatus of claim 1, where the gain vectors are smoothed by the signal processor using a model comprising a perceptual model and a source model, the perceptual model configured to account for masking properties of a human auditory system by exclusion of inaudible portions of the audio signal from the estimated reverberant signal component, and the source model configured to account for physical characteristics of a sound source represented in the audio signal.
 8. The apparatus of claim 1, where the audio signal comprises an original dry audio signal having a reverberant characteristic of an acoustic space superimposed thereon, the reverberant characteristic created from the original dry audio signal.
 9. An apparatus for identifying and extracting the reverberant component of an audio signal, the apparatus comprising: a signal processor configured to receive and process an audio signal representing a dry audio signal having a reverberant characteristic of an acoustic space superimposed thereon; a decompose processor executable with the signal processor to decompose the audio signal into an estimated original dry signal component and an estimated reverberant signal component based on an estimated impulse response of the acoustic space estimated from the audio signal, and a model of an acoustic characteristic of the dry audio signal; and a recompose processor executable with the signal processor to produce one or more frequency spectra from the estimated original dry signal component and the estimated reverberant signal component.
 10. The apparatus of claim 9, where the decompose processor is further executable to estimate a phase of the estimated original dry signal component based on an estimated phase of the estimated reverberant signal component.
 11. The apparatus of claim 9, where the decompose processor is further executable to decompose the estimated reverberant signal component into a plurality of sub-components of the estimated reverberant signal component
 12. The apparatus of claim 9, where the estimated impulse response is a block-based estimate of an impulse response of the acoustic space.
 13. The apparatus of claim 12, further comprising an impulse response estimator executable by the signal processor to generate the block-based estimated impulse response of the acoustic space based on the audio signal and a magnitude of the estimated impulse response of a respective block.
 14. The apparatus of claim 9, where the estimated original dry signal and the estimated impulse response are block-based estimates, and a current block of the estimated original dry signal is produced based on a previous block of the estimated original dry signal.
 15. The apparatus of claim 9, further comprising a modifier executable with the signal processor to independently modify at least one of the estimated original dry signal component and the estimated reverberant signal component of the audio signal.
 16. The apparatus of claim 15, where the modifier is executable to perform at least one of a level adjustment, frequency filtering and dynamic range processing of the estimated original dry signal component, and is further executable to independently perform modification of frequency components of the estimated reverberant signal component.
 17. The apparatus of claim 9, where the recompose processor is further executable to apply a block based impulse response to at least one of the estimated original dry signal component and the estimated reverberant signal component of the audio signal to produce one or more reverberation adjusted frequency spectra.
 18. The apparatus of claim 9, further comprising a signal modifier executable with the signal processor to produce a final output frequency spectra based on receipt of the one or more frequency spectra and receipt of the audio signal.
 19. The apparatus of claim 18, where the audio signal is a multi-channel audio signal, and the signal modifier is further executable to selectively assign the one or more frequency spectra to a plurality of different output frequency spectra representative of output channels, a number of the output channels being greater than a number of channels included in the multi-channel audio signal.
 20. The apparatus of claim 9, where the decompose processor is further executable to exclude from the estimated reverberant signal component a portion of the audio signal that is inaudible to a human
 21. A method of identifying and extracting the reverberant component of an audio signal, the method comprising: receiving and processing an audio signal with an audio signal processor, the audio signal representing a dry audio signal having a reverberant characteristic of an acoustic space superimposed thereon; decomposing the audio signal into an estimated original dry signal component and an estimated reverberant signal component with the audio signal processor, the audio signal decomposed based on an estimated impulse response of the acoustic space that is derived from the audio signal, and a model of an acoustic characteristic of the dry audio signal; the audio signal processor excluding from the estimated reverberant signal component a portion of the audio signal that is inaudible to a human; and producing with the audio signal processor one or more frequency spectra by recombination of the estimated original dry signal component and the estimated reverberant signal component of the audio signal.
 22. The method of claim 21, further comprising generating the estimated impulse response of the acoustic space as a block-based estimated impulse response, where decomposing the estimated original dry signal component and the estimated reverberant signal component is based on a magnitude representation of the respective blocks of the estimated impulse response. 